图像记忆预测的深度学习:情感偏差

Yoann Baveye, Romain Cohendet, Matthieu Perreira Da Silva, P. Callet
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引用次数: 39

摘要

图像记忆预测是计算机科学中的一个新课题。最初的尝试表明,可以通过计算从图像的内在属性推断出它的记忆程度。在本文中,我们介绍了一种基于深度学习的精细图像记忆预测计算模型。该模型的性能显著优于之前的工作,与同一数据集上最先进的模型相比,该模型的相对性能提高了32.78%。我们还研究了我们的模型如何在150张图像的新数据集上进行推广,这些图像的记忆性和情感分数是从50名参与者中收集的。在这个新数据集上的预测性能较弱,这突出了数据集的代表性问题。特别是,该模型在唤起消极图片方面比唤起中性或积极图片获得了更高的预测性能,这让我们想起了记忆数据集由适当分布在情感空间中的图像组成是多么重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Image Memorability Prediction: the Emotional Bias
Image memorability prediction is a recent topic in computer science. First attempts have shown that it is possible to computationally infer from the intrinsic properties of an image the extent to which it is memorable. In this paper, we introduce a fine-tuned deep learning-based computational model for image memorability prediction. The performance of this model significantly outperforms previous work and obtains a 32.78% relative increase compared to the best-performing model from the state of the art on the same dataset. We also investigate how our model generalizes on a new dataset of 150 images, for which memorability and affective scores were collected from 50 participants. The prediction performance is weaker on this new dataset, which highlights the issue of representativity of the datasets. In particular, the model obtains a higher predictive performance for arousing negative pictures than for neutral or arousing positive ones, recalling how important it is for a memorability dataset to consist of images that are appropriately distributed within the emotional space.
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